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On the potential of ruled-based machine learning for disruption prediction on JET

Authors :
Lungaroni, M.
Bergsåker, Henric
Bykov, Igor
Frassinetti, Lorenzo
Garcia Carrasco, Alvaro
Hellsten, Torbjörn
Jonsson, Thomas
Menmuir, Sheena
Petersson, Per
Rachlew, Elisabeth
Ratynskaia, Svetlana V.
Rubel, Marek
Stefániková, Estera
Ström, Petter
Tholerus, Simon
Tolias, Panagiotis
Vallejos, Pablo
Weckmann, Armin
Zhou, Yushan
Zychor, I.
et al.
Lungaroni, M.
Bergsåker, Henric
Bykov, Igor
Frassinetti, Lorenzo
Garcia Carrasco, Alvaro
Hellsten, Torbjörn
Jonsson, Thomas
Menmuir, Sheena
Petersson, Per
Rachlew, Elisabeth
Ratynskaia, Svetlana V.
Rubel, Marek
Stefániková, Estera
Ström, Petter
Tholerus, Simon
Tolias, Panagiotis
Vallejos, Pablo
Weckmann, Armin
Zhou, Yushan
Zychor, I.
et al.
Publication Year :
2018

Abstract

In the last years, it has become apparent that detecting disruptions with sufficient anticipation time is an essential but not exclusive task of predictors. It is also important that the prediction is accompanied by appropriate qualifications of its reliability and it is formulated in mathematical terms appropriate for the task at hand (mitigation, avoidance, classification etc.). In this paper, a wide series of rule-based predictors, of the Classification and Regression Trees (CART) family, have been compared to assess their relative merits. An original refinement of the training, called noise-based ensembles, has allowed not only to obtain significantly better performance but also to increase the interpretability of the results. The final predictors can indeed be represented by a tree or a series of specific and clear rules. Such performance has been proved by analysing large databases of shots on JET with both the carbon wall and the ITER Like Wall. In terms of performance, the developed tools are therefore very competitive with other machine learning techniques, with the specificity of formulating the final models in terms of trees and simple rules.<br />QC 20220301

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1312824817
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1016.j.fusengdes.2018.02.087